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A multi-scale residual network for accelerated radial MR parameter mapping
Institution:1. Institute for Biomedical Engineering, University and ETH Zurich, Zurich, Switzerland;2. Division of Gastroenterology and Hepatology, University Hospital Zurich, Zurich, Switzerland;1. Department of Biomedical Engineering, Tel Aviv University, Tel Aviv, Israel;2. Aix Marseille University, CNRS UMR 7339, CRMBM, Marseille, France;3. Sagol School of Neuroscience, Tel Aviv University, Tel Aviv, Israel;4. Center for Advanced Imaging Innovation and Research (CAI2R), New York University Langone Medical Center, New York, NY, USA;1. College of Information Science and Electronic Engineering, Zhejiang University, Hangzhou, China;2. The First Affiliated Hospital of Zhejiang University, Hangzhou, China
Abstract:A deep learning MR parameter mapping framework which combines accelerated radial data acquisition with a multi-scale residual network (MS-ResNet) for image reconstruction is proposed. The proposed supervised learning strategy uses input image patches from multi-contrast images with radial undersampling artifacts and target image patches from artifact-free multi-contrast images. Subspace filtering is used during pre-processing to denoise input patches. For each anatomy and relaxation parameter, an individual network is trained. in vivo T1 mapping results are obtained on brain and abdomen datasets and in vivo T2 mapping results are obtained on brain and knee datasets. Quantitative results for the T2 mapping of the knee show that MS-ResNet trained using either fully sampled or undersampled data outperforms conventional model-based compressed sensing methods. This is significant because obtaining fully sampled training data is not possible in many applications. in vivo brain and abdomen results for T1 mapping and in vivo brain results for T2 mapping demonstrate that MS-ResNet yields contrast-weighted images and parameter maps that are comparable to those achieved by model-based iterative methods while offering two orders of magnitude reduction in reconstruction times. The proposed approach enables recovery of high-quality contrast-weighted images and parameter maps from highly accelerated radial data acquisitions. The rapid image reconstructions enabled by the proposed approach makes it a good candidate for routine clinical use.
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